CVApr 1, 2025

SCFANet: Style Distribution Constraint Feature Alignment Network For Pathological Staining Translation

arXiv:2504.00490v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem for pathologists by providing an efficient stain conversion method, though it appears incremental as it builds on existing deep learning translation approaches.

The paper tackles the problem of translating Hematoxylin and Eosin (H&E) stained images into Immunohistochemical (IHC) stained images to reduce time and cost in pathological analysis, proposing SCFANet which outperforms existing methods on the Breast Cancer Immunohistochemical dataset.

Immunohistochemical (IHC) staining serves as a valuable technique for detecting specific antigens or proteins through antibody-mediated visualization. However, the IHC staining process is both time-consuming and costly. To address these limitations, the application of deep learning models for direct translation of cost-effective Hematoxylin and Eosin (H&E) stained images into IHC stained images has emerged as an efficient solution. Nevertheless, the conversion from H&E to IHC images presents significant challenges, primarily due to alignment discrepancies between image pairs and the inherent diversity in IHC staining style patterns. To overcome these challenges, we propose the Style Distribution Constraint Feature Alignment Network (SCFANet), which incorporates two innovative modules: the Style Distribution Constrainer (SDC) and Feature Alignment Learning (FAL). The SDC ensures consistency between the generated and target images' style distributions while integrating cycle consistency loss to maintain structural consistency. To mitigate the complexity of direct image-to-image translation, the FAL module decomposes the end-to-end translation task into two subtasks: image reconstruction and feature alignment. Furthermore, we ensure pathological consistency between generated and target images by maintaining pathological pattern consistency and Optical Density (OD) uniformity. Extensive experiments conducted on the Breast Cancer Immunohistochemical (BCI) dataset demonstrate that our SCFANet model outperforms existing methods, achieving precise transformation of H&E-stained images into their IHC-stained counterparts. The proposed approach not only addresses the technical challenges in H&E to IHC image translation but also provides a robust framework for accurate and efficient stain conversion in pathological analysis.

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